Abstract

Climate change, green consumers, energy security, fossil fuel divestment, and technological innovation are powerful forces shaping an increased interest towards investing in companies that specialize in clean energy. Well informed investors need reliable methods for predicting the stock prices of clean energy companies. While the existing literature on forecasting stock prices shows how difficult it is to predict stock prices, there is evidence that predicting stock price direction is more successful than predicting actual stock prices. This paper uses the machine learning method of random forests to predict the stock price direction of clean energy exchange traded funds. Some well-known technical indicators are used as features. Decision tree bagging and random forests predictions of stock price direction are more accurate than those obtained from logit models. For a 20-day forecast horizon, tree bagging and random forests methods produce accuracy rates of between 85% and 90% while logit models produce accuracy rates of between 55% and 60%. Tree bagging and random forests are easy to understand and estimate and are useful methods for forecasting the stock price direction of clean energy stocks.

Highlights

  • Green consumers, energy security, fossil fuel divestment, and technological innovation are powerful forces shaping an increased interest towards investing in companies that specialize in clean energy, broadly defined as energy produced from renewable energy sources like biomass, geothermal, hydro, wind, wave, and solar

  • The research in this paper shows that random forests (RFs) produce more accurate clean energy stock price direction forecasts than logit models

  • Building on the existing finance literature that shows stock price direction is easier to predict than stock prices and recent developments in machine learning showing that

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Summary

Introduction

Green consumers, energy security, fossil fuel divestment, and technological innovation are powerful forces shaping an increased interest towards investing in companies that specialize in clean energy, broadly defined as energy produced from renewable energy sources like biomass, geothermal, hydro, wind, wave, and solar. Investment in clean energy equities totaled $6.6 billion in 2019. While this number was below the record high of $19.7 billion in 2017, the compound annual growth rate between 2004 and 2019 of. Well informed investors need reliable methods for predicting the stock prices of clean energy companies. There is, a noticeable lack of information on the prediction of clean energy stock prices. This is the gap in the literature that this paper fills. The existing literature on stock price predictability shows that predicting stock price direction is more successful than predicting actual stock prices (Basak et al 2019; Leung et al 2000; Nyberg 2011; Nyberg and Pönkä 2016; Pönkä 2016; Ballings et al 2015; Lohrmann and Luukka 2019)

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